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hPSD: A Hybrid PU-Learning-Based Spammer Detection Model for Product Reviews | IEEE Journals & Magazine | IEEE Xplore

hPSD: A Hybrid PU-Learning-Based Spammer Detection Model for Product Reviews


Abstract:

Spammers, who manipulate online reviews to promote or suppress products, are flooding in online commerce. To combat this trend, there has been a great deal of research fo...Show More

Abstract:

Spammers, who manipulate online reviews to promote or suppress products, are flooding in online commerce. To combat this trend, there has been a great deal of research focused on detecting review spammers, most of which design diversified features and thus develop various classifiers. The widespread growth of crowdsourcing platforms has created largescale deceptive review writers who behave more like normal users, that the way they can more easily evade detection by the classifiers that are purely based on fixed characteristics. In this paper, we propose a hybrid semisupervised learning model titled hybrid PU-learning-based spammer detection (hPSD) for spammer detection to leverage both the users' characteristics and the user-product relations. Specifically, the hPSD model can iteratively detect multitype spammers by injecting different positive samples, and allows the construction of classifiers in a semisupervised hybrid learning framework. Comprehensive experiments on movie dataset with shilling injection confirm the superior performance of hPSD over existing baseline methods. The hPSD is then utilized to detect the hidden spammers from real-life Amazon data. A set of spammers and their underlying employers (e.g., book publishers) are successfully discovered and validated. These demonstrate that hPSD meets the real-world application scenarios and can thus effectively detect the potentially deceptive review writers.
Published in: IEEE Transactions on Cybernetics ( Volume: 50, Issue: 4, April 2020)
Page(s): 1595 - 1606
Date of Publication: 02 November 2018

ISSN Information:

PubMed ID: 30403648

Funding Agency:


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